Access the full text.
Sign up today, get DeepDyve free for 14 days.
B. Reiser (2006)
Making authentic practices accessible to learners: Design challenges and strategies
R. Gould, S. Machado, T.A. Johnson, J. Molynoux (2018)
Introduction to Data Science v 5.0
R. Peck, C. Olsen, J.L. Devore (2015)
Introduction to Statistics and Data Analysis
D. Starnes, J. Tabor (2018)
The Practice of Statistics for the AP Exam
Robert Gould (2021)
Toward data‐scientific thinkingTeaching Statistics, 43
George Newman (2019)
The Psychology of AuthenticityReview of General Psychology, 23
T. Philip (2011)
An “Ideology in Pieces” Approach to Studying Change in Teachers’ Sensemaking About Race, Racism, and Racial JusticeCognition and Instruction, 29
Michelle Wilkerson, J. Polman (2019)
Situating Data Science: Exploring How Relationships to Data Shape LearningJournal of the Learning Sciences, 29
D. Conway (2013)
The data science Venn diagram [online]
Victor Lee, Michelle Wilkerson, Kathryn Lanouette (2021)
A Call for a Humanistic Stance Toward K–12 Data Science EducationEducational Researcher, 50
(2016)
Knowledge analysis: an introduction
J. Singer, J. Willett (1990)
Improving the Teaching of Applied Statistics: Putting the Data Back into Data AnalysisThe American Statistician, 44
Victoria Clarke, Virginia Braun (2017)
Thematic analysisThe Journal of Positive Psychology, 12
A. Swan, S. Brown (2008)
The skills, role and career structure of data scientists and curators: An assessment of current practice and future needs
Daniel Edelson (2004)
My World: A Case Study in Adapting Scientists' Tools for Learners
M. Brown, D. Edelson (2003)
Teaching as Design: Can we Better Understand the Ways in Which Teachers Use Materials so we Can Better Design Materials to Support Their Change in Practice?\?}
J. Wagner (2006)
Transfer in PiecesCognition and Instruction, 24
A. diSessa, B. Sherin (1998)
What changes in conceptual changeInternational Journal of Science Education, 20
Rosemary Russ, Victor Lee, B. Sherin (2012)
Framing in cognitive clinical interviews about intuitive science knowledge: Dynamic student understandings of the discourse interactionScience Education, 96
(2021)
Cultivating Interest and Competencies in Computing: Authentic Experiences and Design Factors
A. Stornaiuolo (2019)
Authoring Data Stories in a Media Makerspace: Adolescents Developing Critical Data LiteraciesJournal of the Learning Sciences, 29
Aki Murata (2004)
Paths to Learning Ten-Structured Understandings of Teen Sums: Addition Solution Methods of Japanese Grade 1 StudentsCognition and Instruction, 22
Tim Erickson, Er-Chun Chen (2020)
Introducing data science with data moves and CODAPTeaching Statistics, 43
A. Wise (2019)
Educating Data Scientists and Data Literate Citizens for a New Generation of DataJournal of the Learning Sciences, 29
Shiyan Jiang, Victor Lee, J. Rosenberg (2022)
Data science education across the disciplines: Underexamined opportunities for K-12 innovationBr. J. Educ. Technol., 53
Frank Domahs, K. Moeller, S. Huber, K. Willmes, H. Nuerk (2010)
Embodied numerosity: Implicit hand-based representations influence symbolic number processing across culturesCognition, 116
(1984)
The dialectic of arithmetic in grocery shopping
C. Schwarz, B. Reiser, E. Davis, Lisa Kenyon, A. Acher, David Fortus, Yael Shwartz, B. Hug, J. Krajcik (2009)
Developing a learning progression for scientific modeling: Making scientific modeling accessible and meaningful for learnersJournal of Research in Science Teaching, 46
David Hammer, Andrew Elby, Rachel Scherr, E. Redish (2004)
Resources , framing , and transfer
Cognitive Science, 28
A.A. diSessa, M. Levin, N. Brown (2016a)
Knowledge and Interaction: A Synthetic Agenda for the Learning Sciences
Andee Rubin (2019)
Learning to Reason with Data: How Did We Get Here and What Do We Know?Journal of the Learning Sciences, 29
A. diSessa, N. Gillespie, Jennifer Esterly (2004)
Coherence versus fragmentation in the development of the concept of forceCogn. Sci., 28
O. Parnafes (2007)
What Does “Fast” Mean? Understanding the Physical World Through Computational RepresentationsJournal of the Learning Sciences, 16
C. Batanero, G. Burrill, C. Reading (2011)
Teaching Statistics in School Mathematics-Challenges for Teaching and Teacher Education
J. Smith, A. diSessa, J. Roschelle (1994)
Misconceptions Reconceived: A Constructivist Analysis of Knowledge in TransitionThe Journal of the Learning Sciences, 3
Victor Lee, Victoria Delaney (2021)
Identifying the Content, Lesson Structure, and Data Use Within Pre-collegiate Data Science CurriculaJournal of Science Education and Technology, 31
B. Sherin, Moshe Krakowski, Victor Lee (2012)
Some Assembly Required: How Scientific Explanations Are Constructed during Clinical Interviews.Journal of Research in Science Teaching, 49
Victor Lee, Michelle Wilkerson (2018)
Data Use by Middle and Secondary Students in the Digital Age: A Status Report and Future Prospects
R. Nickerson (2002)
The production and perception of randomness.Psychological review, 109 2
A. diSessa (1993)
Toward an Epistemology of PhysicsCognition and Instruction, 10
O. Hazzan, Noa Ragonis, Tami Lapidot (2020)
Data Science and Computer Science Education
With increased focus on data literacy and data science education in K-12, little is known about what makes a data set preferable for use by classroom teachers. Given that educational designers often privilege authenticity, the purpose of this study is to examine how teachers use features of data sets to determine their suitability for authentic data science learning experiences with their students.Design/methodology/approachInterviews with 12 practicing high school mathematics and statistics teachers were conducted and video-recorded. Teachers were given two different data sets about the same context and asked to explain which one would be better suited for an authentic data science experience. Following knowledge analysis methods, the teachers’ responses were coded and iteratively reviewed to find themes that appeared across multiple teachers related to their aesthetic judgments.FindingsThree aspects of authenticity for data sets for this task were identified. These include thinking of authentic data sets as being “messy,” as requiring more work for the student or analyst to pore through than other data sets and as involving computation.Originality/valueAnalysis of teachers’ aesthetics of data sets is a new direction for work on data literacy and data science education. The findings invite the field to think critically about how to help teachers develop new aesthetics and to provide data sets in curriculum materials that are suited for classroom use.
Information and Learning Science – Emerald Publishing
Published: Jun 5, 2024
Keywords: Data sets; Data literacy; Aesthetics; Data science education; Knowledge analysis; Teacher thinking
Read and print from thousands of top scholarly journals.
Already have an account? Log in
Bookmark this article. You can see your Bookmarks on your DeepDyve Library.
To save an article, log in first, or sign up for a DeepDyve account if you don’t already have one.
Copy and paste the desired citation format or use the link below to download a file formatted for EndNote
Access the full text.
Sign up today, get DeepDyve free for 14 days.
All DeepDyve websites use cookies to improve your online experience. They were placed on your computer when you launched this website. You can change your cookie settings through your browser.